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Publication Years
2
3003
6126
878
49
4
1
1
Category
4015
623
615
558
515
183
98
Toolboxes
723
654
591
537
459
364
311
297
291
272
248
217
189
188
186
141
131
131
126
109
57
56
52
38
29
11
2
Myanmar has made significant progress in its disaster management policies, plans, and procedures since 2008, when Cyclone Nargis impacted the country leaving devastation in its aftermath. The Government of Myanmar (GoM) has modified the government structure and created new authorities and plans to i
...
mprove the effectiveness of disaster management at all levels. While this progress is encouraging and shows the determination of the government to make necessary adjustments, the resources to implement the policy changes have been slower to develop. Myanmar has made significant progress in its disaster management policies, plans, and procedures since 2008, when Cyclone Nargis impacted the country leaving devastation in its aftermath. The Government of Myanmar (GoM) has modified the government structure and created new authorities and plans to improve the effectiveness of disaster management at all levels. While this progress is encouraging and shows the determination of the government to make necessary adjustments, the resources to implement the policy changes have been slower to develop.
more
Over the period 2015 to 2019, scaling up a package of selected nutrition-specific and nutrition sensitive interventions to cover 90 per cent of Sudan would:
- Reduce the under-five mortality rate to 49/1,000 live births
- Reduce the prevalence of stunting to 25 per cent
- Reduce the ... prevalence of wasting (global acute malnutrition – GAM) to 6 per cent
- Increase exclusive breastfeeding to 63 per cent
- Reduce iron deficiency anaemia among pregnant women to 26 per cent. more
- Reduce the under-five mortality rate to 49/1,000 live births
- Reduce the prevalence of stunting to 25 per cent
- Reduce the ... prevalence of wasting (global acute malnutrition – GAM) to 6 per cent
- Increase exclusive breastfeeding to 63 per cent
- Reduce iron deficiency anaemia among pregnant women to 26 per cent. more
Despite improvements in recent years, the prevalence of undernutrition among women and children in Myanmar remains unacceptably high. One in three children are stunted and about 8% are acutely malnourished. Micronutrient deficiencies are common among infants, young children and pregnant women. In fa
...
ct, more than 80% of children 6 to 23 months of age and 70% of pregnant women are anemic. To better understand the determinants of undernutrition and the linkages between food security, livelihoods and nutrition in Myanmar as a whole as well as in specific geographic areas where programs supported by the Livelihoods, Food Security Trust Fund (LIFT) are being implemented, the LEARN project has reviewed food and nutrition security data from the past five years and synthesized relevant findings into this report.
Following the Introduction, Section 2 presents national level data on the food and nutrition security situation in Myanmar in the past five years. Sections 3, 4 and 5 present data on food and nutrition security from the various agro-ecological zones that are of interest to LIFT, namely the Coastal/Delta, Dry, and Uplands. more
Following the Introduction, Section 2 presents national level data on the food and nutrition security situation in Myanmar in the past five years. Sections 3, 4 and 5 present data on food and nutrition security from the various agro-ecological zones that are of interest to LIFT, namely the Coastal/Delta, Dry, and Uplands. more
Undernutrition in Myanmar. Part 2: A Secondary Analysis of LIFT 2013 Household Survey Data
Zaw Win; Cashin, Jennifer
Leveraging Essential Nutrition Actions to Reduce Malnutrition (LEARN)
(2016)
C1
In order to better understand the contributing factors of undernutrition in LIFT program areas and the links between child nutritional status and independent variables of programmatic importance to LIFT (such as income, livelihoods, food security, and water, sanitation and hygiene [WASH]), LEARN com
...
missioned a secondary analysis of nutrition-related data from the 2013 LIFT Household Survey. The purpose of this report is to present the findings of this analysis.
more
This study aims to analyze national and international stakeholders and their initiatives in Early Warning Systems in Myanmar, to identify priority gaps that need to be addressed by all stakeholders. It is presented as a first step towards supporting GoUM in information-gathering under the Myanmar Ac
...
tion Plan for Disaster Risk Reduction (MAPDRR), in particular under Components (2) Risk Assessment, (3) Multi-hazard Early Warning System and (4) Preparedness at all levels, and especially in implementing Sub-Component (3.4) Enhanced Flood Monitoring and Forecasting Capacities at Township Levels.
more
more
Lancet Oncol 2018 Published Online September 12, 2018 http://dx.doi.org/10.1016/S1470-2045(18)30447-9
In many humanitarian emergencies, there is a serious lack of access to even the most basic materials needed for managing the blood in addition to a lack of appropriate sanitation facilities (including water), which are critical for addressing menstrual hygiene. Privacy in emergencies is often scarc
...
e, and even if toilets are available they often lack locks, functioning doors, lighting and separation between genders. These barriers are often intensified by cultural beliefs and taboos surrounding menstruation which can restrict the movements and behaviors of girls and women
more
Growing Up in Conflict: The Impact on Children's Mental Health and Psychosocial Well-being
Maria Bray, Sabine Rakotomalala, Leslie Snider, Saji Thomas
UNICEF, Wendy Ager, Pierette James
(2015)
Report on the symposium 26–28 May 2015, New Babylon Meeting Center, The Hague
Disability Data Collection in Community-based Rehabilitation
Sunil Deepak, Franesca Ortali, Geraldine Mason Halls, Tulgamaa Damdinsuren, Enhbuyant Lhagvajav, Steven Msowoya, Malek Qutteina, Jayanth Kumar
Disability, CBR & Inclusive Development Journal (DCIDJ)
(2016)
CC
Today there are Community-based Rehabilitation (CBR) programmes in a large number of countries. In many countries, the CBR approach is a part of the national rehabilitation services. However, there is a lack of reliable data about persons with disabilities who benefit from CBR and the kind of benefi
...
ts they receive. This article reviews the disability data collection systems and presents some case studies to understand the influence of operational factors on data collection in the CBR programmes. The review shows that most CBR programmes use a variable number of broad functional categories to collect information about persons with disabilities, combined occasionally with more specific diagnostic categories. This categorisation is influenced by local contexts and operational factors, including the limitations of human and material resources available for its implementation, making it difficult to have comparable CBR data. Therefore, any strategies to strengthen the data collection in CBR programmes must take these operational factors into account.
more
Accessed online January 2019, publication date unknown.
Cholera is a diarrhoeal disease that is usually contracted when drinking water contaminated with Vibrio cholerae bacteria. The fight against this disease requires a multidisciplinary approach that combines a water, hygiene and sanitation (WaSH) response with a monitoring system, improved water suppl
...
y and quality, sanitation and hygiene, and a health response with the treatment of the disease itself.
more
Gurejeet al. BMC Health Services Research (2015) 15:242
DOI 10.1186/s12913-015-0911-3
Las directrices actualizadas del mhGAP, la retroalimentación de
información y la evaluación de la versión 1.0 de la GI-mhGAP
por los usuarios han permitido la revisión y elaboración de esta
versión actualizada de la guía. En el año 2015, se llevó a cabo y
se publicó una actualización
...
completa de las directrices mhGAP
conforme a la metodología de la OMS para la formulación de
directrices, que incluyó el proceso de análisis de datos científicos
y la síntesis y formulación de recomendaciones mediante la
participación de un grupo de expertos internacionales e
instituciones con experiencia apropiada: médicos clínicos,
investigadores, directores de programa, formuladores de
políticas y usuarios de los servicios. Se pueden encontrar detalles
de los métodos y las recomendaciones actualizadas en el centro
de datos de investigación del mhGAP: http://www.who.int/
mental_health/mhgap/evidence/es/.
more
1. What do we mean by ‘psychosocial support (PSS)? | 2. What are the basic principles of psychosocial support for UNICEF? | 3. In what types of situations does UNICEF address psychosocial support? | 4. Are there certain psychosocial interventions in which UNICEF should not normally seek to inves
...
t? | 5. Are there any types of interventions we should discourage? | 6. Should UNICEF support one-to-one counselling? In what situations might this be appropriate? | 7. When should children be referred for professional mental health support? | 8. Should we avoid using the term “traumatised” when referring to children? | 9. How do we assess the type or response needed a) for quick, short term action? b) for medium-long term interventions? | 10. How can caregivers and professionals who have themselves experienced the same crises or exposures provide psychosocial support to children? | 11. What materials and tools are recommended to support and monitor PSS interventions? Where can these be obtained?
more
MhGAP-IG – это примерное руководство, поэтому крайне важно адаптировать его в соответствии с уникальной национальной или местной ситуацией. Пользователи могут выбра
...
ь свои варианты приоритетных состояний или мер по адаптации и реализации Руководства в зависимости от имеющихся в наличии и преобладающих ресурсов.
more
The ITHACA Toolkit for monitoring Human Rights and General Health Care in mental health and social care institutions
Institutional Treatment,Human Rights and CareAssessment (ITHACA)
Health Service and Population Research Department,Institute of Psychiatry, King's College London
(2010)